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<h1 id="sec_name">
<span data-if="hdevelop" style="display:inline;">align_metrology_model</span><span data-if="c" style="display:none;">T_align_metrology_model</span><span data-if="cpp" style="display:none;">AlignMetrologyModel</span><span data-if="dotnet" style="display:none;">AlignMetrologyModel</span><span data-if="python" style="display:none;">align_metrology_model</span> (算子名称)</h1>
<h2>名称</h2>
<p><code><span data-if="hdevelop" style="display:inline;">align_metrology_model</span><span data-if="c" style="display:none;">T_align_metrology_model</span><span data-if="cpp" style="display:none;">AlignMetrologyModel</span><span data-if="dotnet" style="display:none;">AlignMetrologyModel</span><span data-if="python" style="display:none;">align_metrology_model</span></code> — Alignment of a metrology model.</p>
<h2 id="sec_synopsis">参数签名</h2>
<div data-if="hdevelop" style="display:inline;">
<p>
<code><b>align_metrology_model</b>( :  : <a href="#MetrologyHandle"><i>MetrologyHandle</i></a>, <a href="#Row"><i>Row</i></a>, <a href="#Column"><i>Column</i></a>, <a href="#Angle"><i>Angle</i></a> : )</code></p>
</div>
<div data-if="c" style="display:none;">
<p>
<code>Herror <b>T_align_metrology_model</b>(const Htuple <a href="#MetrologyHandle"><i>MetrologyHandle</i></a>, const Htuple <a href="#Row"><i>Row</i></a>, const Htuple <a href="#Column"><i>Column</i></a>, const Htuple <a href="#Angle"><i>Angle</i></a>)</code></p>
</div>
<div data-if="cpp" style="display:none;">
<p>
<code>void <b>AlignMetrologyModel</b>(const HTuple&amp; <a href="#MetrologyHandle"><i>MetrologyHandle</i></a>, const HTuple&amp; <a href="#Row"><i>Row</i></a>, const HTuple&amp; <a href="#Column"><i>Column</i></a>, const HTuple&amp; <a href="#Angle"><i>Angle</i></a>)</code></p>
<p>
<code>void <a href="HMetrologyModel.html">HMetrologyModel</a>::<b>AlignMetrologyModel</b>(const HTuple&amp; <a href="#Row"><i>Row</i></a>, const HTuple&amp; <a href="#Column"><i>Column</i></a>, const HTuple&amp; <a href="#Angle"><i>Angle</i></a>) const</code></p>
<p>
<code>void <a href="HMetrologyModel.html">HMetrologyModel</a>::<b>AlignMetrologyModel</b>(double <a href="#Row"><i>Row</i></a>, double <a href="#Column"><i>Column</i></a>, double <a href="#Angle"><i>Angle</i></a>) const</code></p>
</div>
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<p>
<code>static void <a href="HOperatorSet.html">HOperatorSet</a>.<b>AlignMetrologyModel</b>(<a href="HTuple.html">HTuple</a> <a href="#MetrologyHandle"><i>metrologyHandle</i></a>, <a href="HTuple.html">HTuple</a> <a href="#Row"><i>row</i></a>, <a href="HTuple.html">HTuple</a> <a href="#Column"><i>column</i></a>, <a href="HTuple.html">HTuple</a> <a href="#Angle"><i>angle</i></a>)</code></p>
<p>
<code>void <a href="HMetrologyModel.html">HMetrologyModel</a>.<b>AlignMetrologyModel</b>(<a href="HTuple.html">HTuple</a> <a href="#Row"><i>row</i></a>, <a href="HTuple.html">HTuple</a> <a href="#Column"><i>column</i></a>, <a href="HTuple.html">HTuple</a> <a href="#Angle"><i>angle</i></a>)</code></p>
<p>
<code>void <a href="HMetrologyModel.html">HMetrologyModel</a>.<b>AlignMetrologyModel</b>(double <a href="#Row"><i>row</i></a>, double <a href="#Column"><i>column</i></a>, double <a href="#Angle"><i>angle</i></a>)</code></p>
</div>
<div data-if="python" style="display:none;">
<p>
<code>def <b>align_metrology_model</b>(<a href="#MetrologyHandle"><i>metrology_handle</i></a>: HHandle, <a href="#Row"><i>row</i></a>: Union[int, float], <a href="#Column"><i>column</i></a>: Union[int, float], <a href="#Angle"><i>angle</i></a>: Union[int, float]) -&gt; None</code></p>
</div>
<h2 id="sec_description">描述</h2>
<p><code><span data-if="hdevelop" style="display:inline">align_metrology_model</span><span data-if="c" style="display:none">align_metrology_model</span><span data-if="cpp" style="display:none">AlignMetrologyModel</span><span data-if="com" style="display:none">AlignMetrologyModel</span><span data-if="dotnet" style="display:none">AlignMetrologyModel</span><span data-if="python" style="display:none">align_metrology_model</span></code> moves and rotates the whole metrology model
<a href="#MetrologyHandle"><i><code><span data-if="hdevelop" style="display:inline">MetrologyHandle</span><span data-if="c" style="display:none">MetrologyHandle</span><span data-if="cpp" style="display:none">MetrologyHandle</span><span data-if="com" style="display:none">MetrologyHandle</span><span data-if="dotnet" style="display:none">metrologyHandle</span><span data-if="python" style="display:none">metrology_handle</span></code></i></a>
relative to the image coordinate system which has its origin in the
top left corner.
</p>
<p>For an explanation of the concept of 2D 度量 see the
introduction of chapter <a href="toc_2dmetrology.html">2D 度量</a>.
</p>
<p>An alignment ensures, that the position and
orientation of the metrology model is adapted to the
objects to be measured in the current image. The alignment is then
used by <a href="apply_metrology_model.html"><code><span data-if="hdevelop" style="display:inline">apply_metrology_model</span><span data-if="c" style="display:none">apply_metrology_model</span><span data-if="cpp" style="display:none">ApplyMetrologyModel</span><span data-if="com" style="display:none">ApplyMetrologyModel</span><span data-if="dotnet" style="display:none">ApplyMetrologyModel</span><span data-if="python" style="display:none">apply_metrology_model</span></code></a> to perform the measurement.
First the metrology model is rotated by <a href="#Angle"><i><code><span data-if="hdevelop" style="display:inline">Angle</span><span data-if="c" style="display:none">Angle</span><span data-if="cpp" style="display:none">Angle</span><span data-if="com" style="display:none">Angle</span><span data-if="dotnet" style="display:none">angle</span><span data-if="python" style="display:none">angle</span></code></i></a>, then
the metrology model is translated by <a href="#Row"><i><code><span data-if="hdevelop" style="display:inline">Row</span><span data-if="c" style="display:none">Row</span><span data-if="cpp" style="display:none">Row</span><span data-if="com" style="display:none">Row</span><span data-if="dotnet" style="display:none">row</span><span data-if="python" style="display:none">row</span></code></i></a> and <a href="#Column"><i><code><span data-if="hdevelop" style="display:inline">Column</span><span data-if="c" style="display:none">Column</span><span data-if="cpp" style="display:none">Column</span><span data-if="com" style="display:none">Column</span><span data-if="dotnet" style="display:none">column</span><span data-if="python" style="display:none">column</span></code></i></a>.
The values of the alignment are overwritten by the
next call of <code><span data-if="hdevelop" style="display:inline">align_metrology_model</span><span data-if="c" style="display:none">align_metrology_model</span><span data-if="cpp" style="display:none">AlignMetrologyModel</span><span data-if="com" style="display:none">AlignMetrologyModel</span><span data-if="dotnet" style="display:none">AlignMetrologyModel</span><span data-if="python" style="display:none">align_metrology_model</span></code>.
</p>
<h3>Computation of the parameters of the alignment</h3>
<p>The parameters of the alignment can be determined using diverse methods.
Here, three possibilities to determine the parameters are listed:
</p>
<dl class="generic">

<dt><b>Using region analysis:</b></dt>
<dd>
<p>

If the metrology model can be extracted using region processing and if the
pose of the Region changes only slightly in subsequent images, the
parameters of the reference system of the metrology model and of the
alignment can be derived using region analysis. In the following picture
<a href="threshold.html"><code><span data-if="hdevelop" style="display:inline">threshold</span><span data-if="c" style="display:none">threshold</span><span data-if="cpp" style="display:none">Threshold</span><span data-if="com" style="display:none">Threshold</span><span data-if="dotnet" style="display:none">Threshold</span><span data-if="python" style="display:none">threshold</span></code></a> and <a href="smallest_rectangle2.html"><code><span data-if="hdevelop" style="display:inline">smallest_rectangle2</span><span data-if="c" style="display:none">smallest_rectangle2</span><span data-if="cpp" style="display:none">SmallestRectangle2</span><span data-if="com" style="display:none">SmallestRectangle2</span><span data-if="dotnet" style="display:none">SmallestRectangle2</span><span data-if="python" style="display:none">smallest_rectangle2</span></code></a> were used to obtain
these parameter.
</p>
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</g>
</svg><div style="margin-bottom:30px;text-align:center;" class="caption">
The region extracted with <a href="threshold.html"><code><span data-if="hdevelop" style="display:inline">threshold</span><span data-if="c" style="display:none">threshold</span><span data-if="cpp" style="display:none">Threshold</span><span data-if="com" style="display:none">Threshold</span><span data-if="dotnet" style="display:none">Threshold</span><span data-if="python" style="display:none">threshold</span></code></a> is shown in red.
The rectangle computed with <a href="smallest_rectangle2.html"><code><span data-if="hdevelop" style="display:inline">smallest_rectangle2</span><span data-if="c" style="display:none">smallest_rectangle2</span><span data-if="cpp" style="display:none">SmallestRectangle2</span><span data-if="com" style="display:none">SmallestRectangle2</span><span data-if="dotnet" style="display:none">SmallestRectangle2</span><span data-if="python" style="display:none">smallest_rectangle2</span></code></a> is shown in green.
</div>
</div>

<ol>
<li>
<p> Setting the reference system </p>
<p>
In the image in which the metrology model was defined, extract a region
containing the metrology objects. The pose of this region with
respect to the image coordinate system is determined and set
as the reference system of the metrology model using
<a href="set_metrology_model_param.html"><code><span data-if="hdevelop" style="display:inline">set_metrology_model_param</span><span data-if="c" style="display:none">set_metrology_model_param</span><span data-if="cpp" style="display:none">SetMetrologyModelParam</span><span data-if="com" style="display:none">SetMetrologyModelParam</span><span data-if="dotnet" style="display:none">SetMetrologyModelParam</span><span data-if="python" style="display:none">set_metrology_model_param</span></code></a>.
This step is only performed once when setting up the metrology model.</p>
<p>
<i>Example:</i></p>
<p>
<a href="threshold.html"><code><span data-if="hdevelop" style="display:inline">threshold(Image, Region, 0, 50)</span><span data-if="c" style="display:none">threshold(Image, Region, 0, 50)</span><span data-if="cpp" style="display:none">Threshold(Image, Region, 0, 50)</span><span data-if="com" style="display:none">Threshold(Image, Region, 0, 50)</span><span data-if="dotnet" style="display:none">Threshold(Image, Region, 0, 50)</span><span data-if="python" style="display:none">threshold(Image, Region, 0, 50)</span></code></a></p>
<p>
<a href="smallest_rectangle2.html"><code><span data-if="hdevelop" style="display:inline">smallest_rectangle2(Region, RowOrig, ColumnOrig, AngleOrig,
                                    Length1, Length2)</span><span data-if="c" style="display:none">smallest_rectangle2(Region, RowOrig, ColumnOrig, AngleOrig,
                                    Length1, Length2)</span><span data-if="cpp" style="display:none">SmallestRectangle2(Region, RowOrig, ColumnOrig, AngleOrig,
                                    Length1, Length2)</span><span data-if="com" style="display:none">SmallestRectangle2(Region, RowOrig, ColumnOrig, AngleOrig,
                                    Length1, Length2)</span><span data-if="dotnet" style="display:none">SmallestRectangle2(Region, RowOrig, ColumnOrig, AngleOrig,
                                    Length1, Length2)</span><span data-if="python" style="display:none">smallest_rectangle2(Region, RowOrig, ColumnOrig, AngleOrig,
                                    Length1, Length2)</span></code></a></p>
<p>
<a href="set_metrology_model_param.html"><code><span data-if="hdevelop" style="display:inline">set_metrology_model_param(MetrologyHandle, 'reference_system',
                                          [RowOrig, ColumnOrig, AngleOrig])</span><span data-if="c" style="display:none">set_metrology_model_param(MetrologyHandle, "reference_system",
                                          [RowOrig, ColumnOrig, AngleOrig])</span><span data-if="cpp" style="display:none">SetMetrologyModelParam(MetrologyHandle, "reference_system",
                                          [RowOrig, ColumnOrig, AngleOrig])</span><span data-if="com" style="display:none">SetMetrologyModelParam(MetrologyHandle, "reference_system",
                                          [RowOrig, ColumnOrig, AngleOrig])</span><span data-if="dotnet" style="display:none">SetMetrologyModelParam(MetrologyHandle, "reference_system",
                                          [RowOrig, ColumnOrig, AngleOrig])</span><span data-if="python" style="display:none">set_metrology_model_param(MetrologyHandle, "reference_system",
                                          [RowOrig, ColumnOrig, AngleOrig])</span></code></a>
</p>
</li>
<li>
<p>  Determining the alignment</p>
<p>
In an image where the metrology model occurs in a different Pose, the
current pose if the extracted region is determined. This pose is then
used to align the metrology model.</p>
<p>
<i>Example:</i></p>
<p>
<a href="threshold.html"><code><span data-if="hdevelop" style="display:inline">threshold(CurrentImage, Region, 0, 50)</span><span data-if="c" style="display:none">threshold(CurrentImage, Region, 0, 50)</span><span data-if="cpp" style="display:none">Threshold(CurrentImage, Region, 0, 50)</span><span data-if="com" style="display:none">Threshold(CurrentImage, Region, 0, 50)</span><span data-if="dotnet" style="display:none">Threshold(CurrentImage, Region, 0, 50)</span><span data-if="python" style="display:none">threshold(CurrentImage, Region, 0, 50)</span></code></a></p>
<p>
<a href="smallest_rectangle2.html"><code><span data-if="hdevelop" style="display:inline">smallest_rectangle2(Region, RowAlign, ColumnAlign, AngleAlign,
                             Length1, Length2)</span><span data-if="c" style="display:none">smallest_rectangle2(Region, RowAlign, ColumnAlign, AngleAlign,
                             Length1, Length2)</span><span data-if="cpp" style="display:none">SmallestRectangle2(Region, RowAlign, ColumnAlign, AngleAlign,
                             Length1, Length2)</span><span data-if="com" style="display:none">SmallestRectangle2(Region, RowAlign, ColumnAlign, AngleAlign,
                             Length1, Length2)</span><span data-if="dotnet" style="display:none">SmallestRectangle2(Region, RowAlign, ColumnAlign, AngleAlign,
                             Length1, Length2)</span><span data-if="python" style="display:none">smallest_rectangle2(Region, RowAlign, ColumnAlign, AngleAlign,
                             Length1, Length2)</span></code></a></p>
<p>
<code><span data-if="hdevelop" style="display:inline">align_metrology_model(MetrologyHandle, RowAlign, ColumnAlign,
                               AngleAlign)</span><span data-if="c" style="display:none">align_metrology_model(MetrologyHandle, RowAlign, ColumnAlign,
                               AngleAlign)</span><span data-if="cpp" style="display:none">AlignMetrologyModel(MetrologyHandle, RowAlign, ColumnAlign,
                               AngleAlign)</span><span data-if="com" style="display:none">AlignMetrologyModel(MetrologyHandle, RowAlign, ColumnAlign,
                               AngleAlign)</span><span data-if="dotnet" style="display:none">AlignMetrologyModel(MetrologyHandle, RowAlign, ColumnAlign,
                               AngleAlign)</span><span data-if="python" style="display:none">align_metrology_model(MetrologyHandle, RowAlign, ColumnAlign,
                               AngleAlign)</span></code>
</p>
</li>
</ol>

</dd>

<dt><b>Using a shape model:</b></dt>
<dd>
<p>

If a shape model is used to align the metrology model,
the reference system with respect to which the metrology objects are given
has to be set so that it coincides with the coordinate system used by the
shape model.  Only then, the results
(<i><span data-if="hdevelop" style="display:inline">'row'</span><span data-if="c" style="display:none">"row"</span><span data-if="cpp" style="display:none">"row"</span><span data-if="com" style="display:none">"row"</span><span data-if="dotnet" style="display:none">"row"</span><span data-if="python" style="display:none">"row"</span></i>, <i><span data-if="hdevelop" style="display:inline">'column'</span><span data-if="c" style="display:none">"column"</span><span data-if="cpp" style="display:none">"column"</span><span data-if="com" style="display:none">"column"</span><span data-if="dotnet" style="display:none">"column"</span><span data-if="python" style="display:none">"column"</span></i>, <i><span data-if="hdevelop" style="display:inline">'angle'</span><span data-if="c" style="display:none">"angle"</span><span data-if="cpp" style="display:none">"angle"</span><span data-if="com" style="display:none">"angle"</span><span data-if="dotnet" style="display:none">"angle"</span><span data-if="python" style="display:none">"angle"</span></i>) of
<a href="get_generic_shape_model_result.html"><code><span data-if="hdevelop" style="display:inline">get_generic_shape_model_result</span><span data-if="c" style="display:none">get_generic_shape_model_result</span><span data-if="cpp" style="display:none">GetGenericShapeModelResult</span><span data-if="com" style="display:none">GetGenericShapeModelResult</span><span data-if="dotnet" style="display:none">GetGenericShapeModelResult</span><span data-if="python" style="display:none">get_generic_shape_model_result</span></code></a> can be used directly in
<code><span data-if="hdevelop" style="display:inline">align_metrology_model</span><span data-if="c" style="display:none">align_metrology_model</span><span data-if="cpp" style="display:none">AlignMetrologyModel</span><span data-if="com" style="display:none">AlignMetrologyModel</span><span data-if="dotnet" style="display:none">AlignMetrologyModel</span><span data-if="python" style="display:none">align_metrology_model</span></code> to align the metrology model in the current
image.  The individual steps that are needed, are shown below.
</p>
<div style="text-align:center;" class="figure">
<table style="margin-left:auto;margin-right:auto">
<tr>
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</g>
</svg></td>
</tr>
<tr>
<td align="center">
        (
      1)
    </td>
<td align="center">
        (
      2)
    </td>
<td align="center">
        (
      3)
    </td>
</tr>
</table>
<div style="margin-bottom:30px;text-align:center;" class="caption">
(1) The contours of the metrology model (2) The contours of the shape model
(3) The contours of the metrology model after setting the correct
reference system.
</div>
</div>

<ol>
<li>
<p> Setting the reference system  </p>
<p>
In the image in which the metrology model was defined, the pose of the
origin of the shape model is determined and set
as the reference system of the metrology model using
<a href="set_metrology_model_param.html"><code><span data-if="hdevelop" style="display:inline">set_metrology_model_param</span><span data-if="c" style="display:none">set_metrology_model_param</span><span data-if="cpp" style="display:none">SetMetrologyModelParam</span><span data-if="com" style="display:none">SetMetrologyModelParam</span><span data-if="dotnet" style="display:none">SetMetrologyModelParam</span><span data-if="python" style="display:none">set_metrology_model_param</span></code></a>. This step is only performed once
when setting up the metrology model.</p>
<p>
<i>Example:</i></p>
<p>
<a href="train_generic_shape_model.html"><code><span data-if="hdevelop" style="display:inline">train_generic_shape_model(Image, ModelID)</span><span data-if="c" style="display:none">train_generic_shape_model(Image, ModelID)</span><span data-if="cpp" style="display:none">TrainGenericShapeModel(Image, ModelID)</span><span data-if="com" style="display:none">TrainGenericShapeModel(Image, ModelID)</span><span data-if="dotnet" style="display:none">TrainGenericShapeModel(Image, ModelID)</span><span data-if="python" style="display:none">train_generic_shape_model(Image, ModelID)</span></code></a></p>
<p>
<a href="area_center.html"><code><span data-if="hdevelop" style="display:inline">area_center(Image, Area, RowOrig, ColumnOrig)</span><span data-if="c" style="display:none">area_center(Image, Area, RowOrig, ColumnOrig)</span><span data-if="cpp" style="display:none">AreaCenter(Image, Area, RowOrig, ColumnOrig)</span><span data-if="com" style="display:none">AreaCenter(Image, Area, RowOrig, ColumnOrig)</span><span data-if="dotnet" style="display:none">AreaCenter(Image, Area, RowOrig, ColumnOrig)</span><span data-if="python" style="display:none">area_center(Image, Area, RowOrig, ColumnOrig)</span></code></a></p>
<p>
<a href="set_metrology_model_param.html"><code><span data-if="hdevelop" style="display:inline">set_metrology_model_param(MetrologyHandle, 'reference_system',
                                        [RowOrig,ColumnOrig,0])</span><span data-if="c" style="display:none">set_metrology_model_param(MetrologyHandle, "reference_system",
                                        [RowOrig,ColumnOrig,0])</span><span data-if="cpp" style="display:none">SetMetrologyModelParam(MetrologyHandle, "reference_system",
                                        [RowOrig,ColumnOrig,0])</span><span data-if="com" style="display:none">SetMetrologyModelParam(MetrologyHandle, "reference_system",
                                        [RowOrig,ColumnOrig,0])</span><span data-if="dotnet" style="display:none">SetMetrologyModelParam(MetrologyHandle, "reference_system",
                                        [RowOrig,ColumnOrig,0])</span><span data-if="python" style="display:none">set_metrology_model_param(MetrologyHandle, "reference_system",
                                        [RowOrig,ColumnOrig,0])</span></code></a>
</p>
</li>
<li>
<p>  Determining the alignment</p>
<p>
In an image, in which the object to be measured occurs in a different
pose, the current pose of the shape model is determined and set
in the metrology model using <code><span data-if="hdevelop" style="display:inline">align_metrology_model</span><span data-if="c" style="display:none">align_metrology_model</span><span data-if="cpp" style="display:none">AlignMetrologyModel</span><span data-if="com" style="display:none">AlignMetrologyModel</span><span data-if="dotnet" style="display:none">AlignMetrologyModel</span><span data-if="python" style="display:none">align_metrology_model</span></code>.</p>
<p>
<i>Example:</i></p>
<p>
<a href="find_generic_shape_model.html"><code><span data-if="hdevelop" style="display:inline">find_generic_shape_model(CurrentImage, ModelID, MatchResultID,
                                       NumMatchResult)</span><span data-if="c" style="display:none">find_generic_shape_model(CurrentImage, ModelID, MatchResultID,
                                       NumMatchResult)</span><span data-if="cpp" style="display:none">FindGenericShapeModel(CurrentImage, ModelID, MatchResultID,
                                       NumMatchResult)</span><span data-if="com" style="display:none">FindGenericShapeModel(CurrentImage, ModelID, MatchResultID,
                                       NumMatchResult)</span><span data-if="dotnet" style="display:none">FindGenericShapeModel(CurrentImage, ModelID, MatchResultID,
                                       NumMatchResult)</span><span data-if="python" style="display:none">find_generic_shape_model(CurrentImage, ModelID, MatchResultID,
                                       NumMatchResult)</span></code></a></p>
<p>
<a href="get_generic_shape_model_result.html"><code><span data-if="hdevelop" style="display:inline">get_generic_shape_model_result(MatchResultID, 'all', 'row',
                                       RowAlign)</span><span data-if="c" style="display:none">get_generic_shape_model_result(MatchResultID, "all", "row",
                                       RowAlign)</span><span data-if="cpp" style="display:none">GetGenericShapeModelResult(MatchResultID, "all", "row",
                                       RowAlign)</span><span data-if="com" style="display:none">GetGenericShapeModelResult(MatchResultID, "all", "row",
                                       RowAlign)</span><span data-if="dotnet" style="display:none">GetGenericShapeModelResult(MatchResultID, "all", "row",
                                       RowAlign)</span><span data-if="python" style="display:none">get_generic_shape_model_result(MatchResultID, "all", "row",
                                       RowAlign)</span></code></a></p>
<p>
<a href="get_generic_shape_model_result.html"><code><span data-if="hdevelop" style="display:inline">get_generic_shape_model_result(MatchResultID, 'all', 'column',
                                       ColumnAlign)</span><span data-if="c" style="display:none">get_generic_shape_model_result(MatchResultID, "all", "column",
                                       ColumnAlign)</span><span data-if="cpp" style="display:none">GetGenericShapeModelResult(MatchResultID, "all", "column",
                                       ColumnAlign)</span><span data-if="com" style="display:none">GetGenericShapeModelResult(MatchResultID, "all", "column",
                                       ColumnAlign)</span><span data-if="dotnet" style="display:none">GetGenericShapeModelResult(MatchResultID, "all", "column",
                                       ColumnAlign)</span><span data-if="python" style="display:none">get_generic_shape_model_result(MatchResultID, "all", "column",
                                       ColumnAlign)</span></code></a></p>
<p>
<a href="get_generic_shape_model_result.html"><code><span data-if="hdevelop" style="display:inline">get_generic_shape_model_result(MatchResultID, 'all', 'angle',
                                       AngleAlign)</span><span data-if="c" style="display:none">get_generic_shape_model_result(MatchResultID, "all", "angle",
                                       AngleAlign)</span><span data-if="cpp" style="display:none">GetGenericShapeModelResult(MatchResultID, "all", "angle",
                                       AngleAlign)</span><span data-if="com" style="display:none">GetGenericShapeModelResult(MatchResultID, "all", "angle",
                                       AngleAlign)</span><span data-if="dotnet" style="display:none">GetGenericShapeModelResult(MatchResultID, "all", "angle",
                                       AngleAlign)</span><span data-if="python" style="display:none">get_generic_shape_model_result(MatchResultID, "all", "angle",
                                       AngleAlign)</span></code></a></p>
<p>
<code><span data-if="hdevelop" style="display:inline">align_metrology_model(MetrologyHandle, RowAlign, ColumnAlign,
                                       AngleAlign)</span><span data-if="c" style="display:none">align_metrology_model(MetrologyHandle, RowAlign, ColumnAlign,
                                       AngleAlign)</span><span data-if="cpp" style="display:none">AlignMetrologyModel(MetrologyHandle, RowAlign, ColumnAlign,
                                       AngleAlign)</span><span data-if="com" style="display:none">AlignMetrologyModel(MetrologyHandle, RowAlign, ColumnAlign,
                                       AngleAlign)</span><span data-if="dotnet" style="display:none">AlignMetrologyModel(MetrologyHandle, RowAlign, ColumnAlign,
                                       AngleAlign)</span><span data-if="python" style="display:none">align_metrology_model(MetrologyHandle, RowAlign, ColumnAlign,
                                       AngleAlign)</span></code>
</p>
</li>
</ol>

</dd>

<dt><b>Using a rigid 2D transformation:</b></dt>
<dd>
<p>

If certain model points (given as [PRowModel], [PColumnModel]) can be
clearly identified and if they can still be clearly identified in further
images in which the objects to be measured can occur shifted or rotated,
a rigid transformation can be calculated between those points.
The transformation parameters can then directly be used for aligning
the model. In this case, the reference point of the metrology model
does not have to be changed.
</p>
<div style="text-align:center;" class="figure">
<table style="margin-left:auto;margin-right:auto">
<tr>
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</g>
</svg></td>
</tr>
<tr>
<td align="center">
        (
      1)
    </td>
<td align="center">
        (
      2)
    </td>
</tr>
</table>
<div style="margin-bottom:30px;text-align:center;" class="caption">
(1) The contours of the metrology object and the four corresponding
points in the image that was used for the creation of the metrology model.
(2) The contours of the metrology object and the four corresponding
points in a new image.
</div>
</div>
<ol>
<li>
<p> Determine the point correspondences
</p>
</li>
<li>
<p> Estimate the model pose</p>
<p>
The following operator sequence calculates the parameters of the model
pose
(<a href="#Row"><i><code><span data-if="hdevelop" style="display:inline">Row</span><span data-if="c" style="display:none">Row</span><span data-if="cpp" style="display:none">Row</span><span data-if="com" style="display:none">Row</span><span data-if="dotnet" style="display:none">row</span><span data-if="python" style="display:none">row</span></code></i></a>, <a href="#Column"><i><code><span data-if="hdevelop" style="display:inline">Column</span><span data-if="c" style="display:none">Column</span><span data-if="cpp" style="display:none">Column</span><span data-if="com" style="display:none">Column</span><span data-if="dotnet" style="display:none">column</span><span data-if="python" style="display:none">column</span></code></i></a>, <a href="#Angle"><i><code><span data-if="hdevelop" style="display:inline">Angle</span><span data-if="c" style="display:none">Angle</span><span data-if="cpp" style="display:none">Angle</span><span data-if="com" style="display:none">Angle</span><span data-if="dotnet" style="display:none">angle</span><span data-if="python" style="display:none">angle</span></code></i></a>)
from corresponding points in the model image and one other image.</p>
<p>
<i>Example:</i></p>
<p>
<a href="vector_to_rigid.html"><code><span data-if="hdevelop" style="display:inline">vector_to_rigid(PRowModel, PColumnModel, PRowCurrent,
                                PColumnCurrent, HomMat2D)</span><span data-if="c" style="display:none">vector_to_rigid(PRowModel, PColumnModel, PRowCurrent,
                                PColumnCurrent, HomMat2D)</span><span data-if="cpp" style="display:none">VectorToRigid(PRowModel, PColumnModel, PRowCurrent,
                                PColumnCurrent, HomMat2D)</span><span data-if="com" style="display:none">VectorToRigid(PRowModel, PColumnModel, PRowCurrent,
                                PColumnCurrent, HomMat2D)</span><span data-if="dotnet" style="display:none">VectorToRigid(PRowModel, PColumnModel, PRowCurrent,
                                PColumnCurrent, HomMat2D)</span><span data-if="python" style="display:none">vector_to_rigid(PRowModel, PColumnModel, PRowCurrent,
                                PColumnCurrent, HomMat2D)</span></code></a></p>
<p>
<a href="hom_mat2d_to_affine_par.html"><code><span data-if="hdevelop" style="display:inline">hom_mat2d_to_affine_par(HomMat2D, Sx, Sy, Angle, Theta,
                                        Row, Column)</span><span data-if="c" style="display:none">hom_mat2d_to_affine_par(HomMat2D, Sx, Sy, Angle, Theta,
                                        Row, Column)</span><span data-if="cpp" style="display:none">HomMat2dToAffinePar(HomMat2D, Sx, Sy, Angle, Theta,
                                        Row, Column)</span><span data-if="com" style="display:none">HomMat2dToAffinePar(HomMat2D, Sx, Sy, Angle, Theta,
                                        Row, Column)</span><span data-if="dotnet" style="display:none">HomMat2dToAffinePar(HomMat2D, Sx, Sy, Angle, Theta,
                                        Row, Column)</span><span data-if="python" style="display:none">hom_mat2d_to_affine_par(HomMat2D, Sx, Sy, Angle, Theta,
                                        Row, Column)</span></code></a></p>
<p>
<code><span data-if="hdevelop" style="display:inline">align_metrology_model(MetrologyHandle, Row, Column, Angle)</span><span data-if="c" style="display:none">align_metrology_model(MetrologyHandle, Row, Column, Angle)</span><span data-if="cpp" style="display:none">AlignMetrologyModel(MetrologyHandle, Row, Column, Angle)</span><span data-if="com" style="display:none">AlignMetrologyModel(MetrologyHandle, Row, Column, Angle)</span><span data-if="dotnet" style="display:none">AlignMetrologyModel(MetrologyHandle, Row, Column, Angle)</span><span data-if="python" style="display:none">align_metrology_model(MetrologyHandle, Row, Column, Angle)</span></code>
</p>
</li>
</ol>
</dd>
</dl>
<h2 id="sec_execution">运行信息</h2>
<ul>
  <li>多线程类型:可重入(与非独占操作符并行运行)。</li>
<li>多线程作用域:全局(可以从任何线程调用)。</li>
  <li>未经并行化处理。</li>
</ul>
<p>This operator modifies the state of the following input parameter:</p>
<ul><li><a href="#MetrologyHandle"><span data-if="hdevelop" style="display:inline">MetrologyHandle</span><span data-if="c" style="display:none">MetrologyHandle</span><span data-if="cpp" style="display:none">MetrologyHandle</span><span data-if="com" style="display:none">MetrologyHandle</span><span data-if="dotnet" style="display:none">metrologyHandle</span><span data-if="python" style="display:none">metrology_handle</span></a></li></ul>
<p>During execution of this operator, access to the value of this parameter must be synchronized if it is used across multiple threads.</p>
<h2 id="sec_parameters">参数表</h2>
  <div class="par">
<div class="parhead">
<span id="MetrologyHandle" class="parname"><b><code><span data-if="hdevelop" style="display:inline">MetrologyHandle</span><span data-if="c" style="display:none">MetrologyHandle</span><span data-if="cpp" style="display:none">MetrologyHandle</span><span data-if="com" style="display:none">MetrologyHandle</span><span data-if="dotnet" style="display:none">metrologyHandle</span><span data-if="python" style="display:none">metrology_handle</span></code></b> (input_control, state is modified)  </span><span>metrology_model <code>→</code> <span data-if="dotnet" style="display:none"><a href="HMetrologyModel.html">HMetrologyModel</a>, </span><span data-if="dotnet" style="display:none"><a href="HTuple.html">HTuple</a></span><span data-if="python" style="display:none">HHandle</span><span data-if="cpp" style="display:none"><a href="HTuple.html">HTuple</a></span><span data-if="c" style="display:none">Htuple</span><span data-if="hdevelop" style="display:inline"> (handle)</span><span data-if="dotnet" style="display:none"> (<i>IntPtr</i>)</span><span data-if="cpp" style="display:none"> (<i>HHandle</i>)</span><span data-if="c" style="display:none"> (<i>handle</i>)</span></span>
</div>
<p class="pardesc">Handle of the metrology model.</p>
</div>
  <div class="par">
<div class="parhead">
<span id="Row" class="parname"><b><code><span data-if="hdevelop" style="display:inline">Row</span><span data-if="c" style="display:none">Row</span><span data-if="cpp" style="display:none">Row</span><span data-if="com" style="display:none">Row</span><span data-if="dotnet" style="display:none">row</span><span data-if="python" style="display:none">row</span></code></b> (input_control)  </span><span>real <code>→</code> <span data-if="dotnet" style="display:none"><a href="HTuple.html">HTuple</a></span><span data-if="python" style="display:none">Union[int, float]</span><span data-if="cpp" style="display:none"><a href="HTuple.html">HTuple</a></span><span data-if="c" style="display:none">Htuple</span><span data-if="hdevelop" style="display:inline"> (real / </span><span data-if="hdevelop" style="display:inline">integer)</span><span data-if="dotnet" style="display:none"> (<i>double</i> / </span><span data-if="dotnet" style="display:none">int / </span><span data-if="dotnet" style="display:none">long)</span><span data-if="cpp" style="display:none"> (<i>double</i> / </span><span data-if="cpp" style="display:none">Hlong)</span><span data-if="c" style="display:none"> (<i>double</i> / </span><span data-if="c" style="display:none">Hlong)</span></span>
</div>
<p class="pardesc">Row coordinate of the alignment.</p>
<p class="pardesc"><span class="parcat">Default:
      </span>0</p>
</div>
  <div class="par">
<div class="parhead">
<span id="Column" class="parname"><b><code><span data-if="hdevelop" style="display:inline">Column</span><span data-if="c" style="display:none">Column</span><span data-if="cpp" style="display:none">Column</span><span data-if="com" style="display:none">Column</span><span data-if="dotnet" style="display:none">column</span><span data-if="python" style="display:none">column</span></code></b> (input_control)  </span><span>real <code>→</code> <span data-if="dotnet" style="display:none"><a href="HTuple.html">HTuple</a></span><span data-if="python" style="display:none">Union[int, float]</span><span data-if="cpp" style="display:none"><a href="HTuple.html">HTuple</a></span><span data-if="c" style="display:none">Htuple</span><span data-if="hdevelop" style="display:inline"> (real / </span><span data-if="hdevelop" style="display:inline">integer)</span><span data-if="dotnet" style="display:none"> (<i>double</i> / </span><span data-if="dotnet" style="display:none">int / </span><span data-if="dotnet" style="display:none">long)</span><span data-if="cpp" style="display:none"> (<i>double</i> / </span><span data-if="cpp" style="display:none">Hlong)</span><span data-if="c" style="display:none"> (<i>double</i> / </span><span data-if="c" style="display:none">Hlong)</span></span>
</div>
<p class="pardesc">Column coordinate of the alignment.</p>
<p class="pardesc"><span class="parcat">Default:
      </span>0</p>
</div>
  <div class="par">
<div class="parhead">
<span id="Angle" class="parname"><b><code><span data-if="hdevelop" style="display:inline">Angle</span><span data-if="c" style="display:none">Angle</span><span data-if="cpp" style="display:none">Angle</span><span data-if="com" style="display:none">Angle</span><span data-if="dotnet" style="display:none">angle</span><span data-if="python" style="display:none">angle</span></code></b> (input_control)  </span><span>angle.rad <code>→</code> <span data-if="dotnet" style="display:none"><a href="HTuple.html">HTuple</a></span><span data-if="python" style="display:none">Union[int, float]</span><span data-if="cpp" style="display:none"><a href="HTuple.html">HTuple</a></span><span data-if="c" style="display:none">Htuple</span><span data-if="hdevelop" style="display:inline"> (real / </span><span data-if="hdevelop" style="display:inline">integer)</span><span data-if="dotnet" style="display:none"> (<i>double</i> / </span><span data-if="dotnet" style="display:none">int / </span><span data-if="dotnet" style="display:none">long)</span><span data-if="cpp" style="display:none"> (<i>double</i> / </span><span data-if="cpp" style="display:none">Hlong)</span><span data-if="c" style="display:none"> (<i>double</i> / </span><span data-if="c" style="display:none">Hlong)</span></span>
</div>
<p class="pardesc">Rotation angle of the alignment.</p>
<p class="pardesc"><span class="parcat">Default:
      </span>0</p>
</div>
<h2 id="sec_example_all">例程 (HDevelop)</h2>
<pre class="example">
read_image (Image, 'metal-parts/circle_plate_01')
create_metrology_model (MetrologyHandle)
get_image_size (Image, Width, Height)
set_metrology_model_image_size (MetrologyHandle, Width, Height)
CircleParam := [354,274,53]
CircleParam := [CircleParam,350,519,53]
add_metrology_object_generic (MetrologyHandle, 'circle', CircleParam, 20,\
                              5, 1, 30, [], [], CircleIndices)
create_generic_shape_model (ModelID)
set_generic_shape_model_param (ModelID, 'metric', 'use_polarity')
set_generic_shape_model_param (ModelID, 'min_contrast', 20)
train_generic_shape_model (Image, ModelID)
* Determine location of shape model origin
area_center (Image, Area, RowOrigin, ColOrigin)
set_metrology_model_param (MetrologyHandle, 'reference_system', \
                           [RowOrigin,ColOrigin,0])
read_image (CurrentImage, 'metal-parts/circle_plate_02')
find_generic_shape_model (CurrentImage, ModelID, MatchResultID, \
                          NumMatchResult)
get_generic_shape_model_result (MatchResultID, 'all', 'row', Row)
get_generic_shape_model_result (MatchResultID, 'all', 'column', Col)
get_generic_shape_model_result (MatchResultID, 'all', 'angle', Angle)
align_metrology_model (MetrologyHandle, Row, Col, Angle)
apply_metrology_model (CurrentImage, MetrologyHandle)
get_metrology_object_result (MetrologyHandle, CircleIndices, 'all', \
                             'result_type', 'all_param', Rectangle)
get_metrology_object_result_contour (Contour, MetrologyHandle, \
                                     CircleIndices, 'all', 1.5)
</pre>
<h2 id="sec_result">结果</h2>
<p>如果参数均有效，算子
<code><span data-if="hdevelop" style="display:inline">align_metrology_model</span><span data-if="c" style="display:none">align_metrology_model</span><span data-if="cpp" style="display:none">AlignMetrologyModel</span><span data-if="com" style="display:none">AlignMetrologyModel</span><span data-if="dotnet" style="display:none">AlignMetrologyModel</span><span data-if="python" style="display:none">align_metrology_model</span></code> 返回值 <TT>2</TT> (
      <TT>H_MSG_TRUE</TT>)
    .
如有必要，将引发异常。</p>
<h2 id="sec_predecessors">可能的前置算子</h2>
<p>
<code><a href="set_metrology_model_param.html"><span data-if="hdevelop" style="display:inline">set_metrology_model_param</span><span data-if="c" style="display:none">set_metrology_model_param</span><span data-if="cpp" style="display:none">SetMetrologyModelParam</span><span data-if="com" style="display:none">SetMetrologyModelParam</span><span data-if="dotnet" style="display:none">SetMetrologyModelParam</span><span data-if="python" style="display:none">set_metrology_model_param</span></a></code>, 
<code><a href="add_metrology_object_generic.html"><span data-if="hdevelop" style="display:inline">add_metrology_object_generic</span><span data-if="c" style="display:none">add_metrology_object_generic</span><span data-if="cpp" style="display:none">AddMetrologyObjectGeneric</span><span data-if="com" style="display:none">AddMetrologyObjectGeneric</span><span data-if="dotnet" style="display:none">AddMetrologyObjectGeneric</span><span data-if="python" style="display:none">add_metrology_object_generic</span></a></code>
</p>
<h2 id="sec_successors">可能的后置算子</h2>
<p>
<code><a href="apply_metrology_model.html"><span data-if="hdevelop" style="display:inline">apply_metrology_model</span><span data-if="c" style="display:none">apply_metrology_model</span><span data-if="cpp" style="display:none">ApplyMetrologyModel</span><span data-if="com" style="display:none">ApplyMetrologyModel</span><span data-if="dotnet" style="display:none">ApplyMetrologyModel</span><span data-if="python" style="display:none">apply_metrology_model</span></a></code>
</p>
<h2 id="sec_see">参考其它</h2>
<p>
<code><a href="get_metrology_object_model_contour.html"><span data-if="hdevelop" style="display:inline">get_metrology_object_model_contour</span><span data-if="c" style="display:none">get_metrology_object_model_contour</span><span data-if="cpp" style="display:none">GetMetrologyObjectModelContour</span><span data-if="com" style="display:none">GetMetrologyObjectModelContour</span><span data-if="dotnet" style="display:none">GetMetrologyObjectModelContour</span><span data-if="python" style="display:none">get_metrology_object_model_contour</span></a></code>
</p>
<h2 id="sec_module">模块</h2>
<p>
2D 度量</p>
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